Best 32 Shot Model
This is a model based on sentence-transformers that can map sentences and paragraphs to a 768-dimensional dense vector space, suitable for tasks such as clustering or semantic search.
Downloads 14
Release Time : 12/7/2022
Model Overview
This model is mainly used to calculate the semantic similarity between sentences and paragraphs, and can generate high-quality sentence embedding vectors, suitable for natural language processing tasks such as information retrieval, text clustering, and semantic search.
Model Features
High-quality sentence embedding
Can generate high-quality 768-dimensional sentence embedding vectors to effectively capture semantic information
Semantic similarity calculation
Specifically optimized for calculating the semantic similarity between sentences and paragraphs
Easy to use
Provides a simple and easy-to-use interface through the sentence-transformers library
Model Capabilities
Sentence vectorization
Semantic similarity calculation
Text clustering
Information retrieval
Semantic search
Use Cases
Information retrieval
Document similarity search
Find semantically similar documents in a large number of documents
Improve retrieval relevance and accuracy
Text clustering
Topic clustering
Cluster semantically similar documents or sentences together
Automatically discover the topic structure in the document collection
Question-answering system
Similar question matching
Match similar historical questions in the question-answering system
Improve the response accuracy of the question-answering system
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